Ensemble-based machine learning approach for improved leak detection in water mains
Author(s) -
T. Ravichandran,
Keyhan Gavahi,
K. Ponnambalam,
Valentin Burtea,
S. Jamshid Mousavi
Publication year - 2021
Publication title -
journal of hydroinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.654
H-Index - 50
eISSN - 1465-1734
pISSN - 1464-7141
DOI - 10.2166/hydro.2021.093
Subject(s) - false positive paradox , gradient boosting , ensemble learning , boosting (machine learning) , computer science , artificial intelligence , leak , classifier (uml) , binary classification , decision tree , machine learning , pattern recognition (psychology) , leak detection , support vector machine , random forest , engineering , environmental engineering
This paper presents an acoustic leak detection system for distribution water mains using machine learning methods. The problem is formulated as a binary classifier to identify leak and no-leak cases using acoustic signals. A supervised learning methodology has been employed using several detection features extracted from acoustic signals, such as power spectral density and time-series data. The training and validation data sets have been collected over several months from multiple cities across North America. The proposed solution includes a multi-strategy ensemble learning (MEL) using a gradient boosting tree (GBT) classification model, which has performed better in maximizing detection rate and minimizing false positives as compared with other classification models such as KNN, ANN, and rule-based techniques. Further improvements have been achieved using a multitude of GBT classifiers combined in a parallel ensemble method called bagging algorithm. The proposed MEL approach demonstrates a significant improvement in performance, resulting in a reduction of false positives reports by an order of magnitude.
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